Title of article :
Visual Tracking and Recognition Using Appearance-Adaptive Models in Particle Filters
Author/Authors :
S. K. Zhou، نويسنده , , R. Chellappa، نويسنده , , and B. Moghaddam، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
We present an approach that incorporates appearance-
adaptive models in a particle filter to realize robust visual
tracking and recognition algorithms. Tracking needs modeling
interframe motion and appearance changes, whereas recognition
needs modeling appearance changes between frames and gallery
images. In conventional tracking algorithms, the appearance
model is either fixed or rapidly changing, and the motion model is
simply a random walk with fixed noise variance. Also, the number
of particles is typically fixed. All these factors make the visual
tracker unstable. To stabilize the tracker, we propose the following
modifications: an observation model arising from an adaptive
appearance model, an adaptive velocity motion model with adaptive
noise variance, and an adaptive number of particles. The
adaptive-velocity model is derived using a first-order linear predictor
based on the appearance difference between the incoming
observation and the previous particle configuration. Occlusion
analysis is implemented using robust statistics. Experimental
results on tracking visual objects in long outdoor and indoor video
sequences demonstrate the effectiveness and robustness of our
tracking algorithm. We then perform simultaneous tracking and
recognition by embedding them in a particle filter. For recognition
purposes, we model the appearance changes between frames
and gallery images by constructing the intra- and extrapersonal
spaces. Accurate recognition is achieved when confronted by pose
and view variations.
Keywords :
Appearance-adaptive model , Occlusion , Visual recognition , visual tracking. , particlefiltering
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING